Learning Robust Feature Representations in Deep Networks for Image Classification

Breton L. Minnehan, A. Savakis
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引用次数: 0

Abstract

Deep learning has emerged as the method of choice for many computer vision applications. Training deep networks involves the utilization of a loss function, such as cross entropy. In this paper, we propose a novel auxiliary loss function, the Silhouette Loss, for training deep networks with the objective of obtaining feature representations that are both tightly clustered and highly separable. We are motivated by the need for well-clustered features that can generalize effectively for the classification of diverse test samples. We also introduce an adaptive scaling scheme for the regularization parameter of the auxiliary loss, which improves robustness and eliminates the selection of another hyperparameter. By training a small network with our auxiliary loss we achieve classification performance that is comparable to that of larger networks, yet our network is more efficient and utilizes much fewer parameters.
深度网络图像分类鲁棒特征表征学习
深度学习已经成为许多计算机视觉应用的首选方法。训练深度网络需要用到损失函数,比如交叉熵。在本文中,我们提出了一种新的辅助损失函数,剪影损失,用于训练深度网络,目的是获得紧密聚类和高度可分离的特征表示。我们的动机是需要良好的聚类特征,这些特征可以有效地概括不同测试样本的分类。我们还引入了辅助损失正则化参数的自适应标度方案,提高了鲁棒性并消除了另一个超参数的选择。通过用我们的辅助损失训练一个小网络,我们获得了与大型网络相当的分类性能,但我们的网络更高效,使用的参数更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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